PLoS ONE (Jan 2019)

Label-free classification of cells based on supervised machine learning of subcellular structures.

  • Yusuke Ozaki,
  • Hidenao Yamada,
  • Hirotoshi Kikuchi,
  • Amane Hirotsu,
  • Tomohiro Murakami,
  • Tomohiro Matsumoto,
  • Toshiki Kawabata,
  • Yoshihiro Hiramatsu,
  • Kinji Kamiya,
  • Toyohiko Yamauchi,
  • Kentaro Goto,
  • Yukio Ueda,
  • Shigetoshi Okazaki,
  • Masatoshi Kitagawa,
  • Hiroya Takeuchi,
  • Hiroyuki Konno

DOI
https://doi.org/10.1371/journal.pone.0211347
Journal volume & issue
Vol. 14, no. 1
p. e0211347

Abstract

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It is demonstrated that cells can be classified by pattern recognition of the subcellular structure of non-stained live cells, and the pattern recognition was performed by machine learning. Human white blood cells and five types of cancer cell lines were imaged by quantitative phase microscopy, which provides morphological information without staining quantitatively in terms of optical thickness of cells. Subcellular features were then extracted from the obtained images as training data sets for the machine learning. The built classifier successfully classified WBCs from cell lines (area under ROC curve = 0.996). This label-free, non-cytotoxic cell classification based on the subcellular structure of QPM images has the potential to serve as an automated diagnosis of single cells.